4.6 Article

ON HIGH-ORDER MODEL REGULARIZATION FOR CONSTRAINED OPTIMIZATION

Journal

SIAM JOURNAL ON OPTIMIZATION
Volume 27, Issue 4, Pages 2447-2458

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/17M1115472

Keywords

nonlinear programming; high-order regularization; complexity

Funding

  1. Cepid-Cemeai-Fapesp
  2. PRONEX-CNPq/FAPERJ [E-26/111.449/2010-APQ1]
  3. FAPESP [2010/10133-0, 2013/03447-6, 2013/05475-7, 2013/07375-0]
  4. CNPq

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In two recent papers regularization methods based on Taylor polynomial models for minimization were proposed that only rely on Holder conditions on the higher-order employedderivatives. Grapiglia and Nesterov considered cubic regularization with a sufficient descent condition that uses the current gradient and resembles the classical Armijo's criterion. Cartis, Gould, and Toint used Taylor models with arbitrary-order regularization and defined methods that tackle convex constraints employing the descent criterion that compares actual reduction with predicted reduction. The methods presented in this paper consider general (not necessarily Taylor) models of arbitrary order, employ a very mild descent criterion, and handle general, nonnecessarily convex, constraints. Complexity results are compatible with the ones presented in the papers mentioned above.

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